DiffSharp
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DiffSharp is a library that enables precise and efficient calculation of derivatives through the use of functional automatic differentiation. It systematically applies the chain rule of calculus at the elementary operator level during program execution.
Developer
DiffSharp
HQ Location
Maynooth
Strengths
  • Efficient

    Optimized for large-scale machine learning tasks

  • Accurate

    Provides accurate gradients for complex functions

  • Flexible

    Supports a wide range of programming languages and platforms

Weaknesses
  • Limited Functionality

    Focused on automatic differentiation, lacks other machine learning features

  • Steep Learning Curve

    Requires advanced knowledge of machine learning and programming

  • Small Community

    Limited resources and support compared to larger machine learning libraries

Opportunities
  • Increasing interest in automatic differentiation and machine learning
  • Potential for partnerships with other machine learning libraries and platforms
  • Opportunity to expand functionality and features to attract more users
Threats
  • Competition from larger and more established machine learning libraries
  • Potential for new technologies to render automatic differentiation obsolete
  • Potential for increased regulation and restrictions on machine learning and AI

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http://diffsharp.github.io
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DiffSharp Plan

DiffSharp offers a free community version and a paid enterprise version with additional features, starting at $10,000 per year.
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